...
首页> 外文期刊>Geoderma: An International Journal of Soil Science >Comparison of various uncertainty modelling approaches based on geostatistics and machine learning algorithms
【24h】

Comparison of various uncertainty modelling approaches based on geostatistics and machine learning algorithms

机译:基于地统计学和机器学习算法的各种不确定性建模方法的比较

获取原文
获取原文并翻译 | 示例
           

摘要

We compared the suitability of several commonly applied digital soil mapping (DSM) techniques to quantify uncertainty with regards to a survey of soil organic carbon stock (SOCS) in Hungary. To represent the wide range of DSM techniques fairly, the followings were selected: universal kriging (UK), sequential Gaussian simulation (SGS), random forest combined with kriging (RFK) and quantile regression forest (QRF). For RFK two different uncertainty quantification approaches were adopted based on kriging variance (RFK-1) and bootstrapping (RFK-2). The selection of the potential environmental covariates was based on Jenny's factorial model of soil formation. The spatial predictions of SOCS and their uncertainty models were evaluated and compared using a control dataset. For this purpose, we applied the most common measures (i.e. mean error and root mean square error), furthermore, accuracy plot and G statistic. According to our results, QRF and SGS produced the best uncertainty models. UK and RFK-2 overestimated the uncertainty whereas RFK-1 produced the worst uncertainty quantification according to the accuracy plots and G statistics. We could draw the general conclusion that there is a need to validate the uncertainty models. Furthermore, great attention should be paid to the assumptions made in uncertainty modelling.
机译:比较了几种常用的数字土壤 - 绘图(DSM)技术的适用性,以量化匈牙利土壤有机碳股(SoC)调查的不确定性。要相当代表广泛的DSM技术,选择了以下内容:通用Kriging(英国),顺序高斯模拟(SGS),随机森林与Kriging(RFK)和分量回归林(QRF)相结合。对于RFK,基于Kriging差异(RFK-1)和自动启动(RFK-2)采用了两种不同的不确定性定量方法。潜在的环境协变者的选择是基于珍妮的土壤形成阶乘模型。使用控制数据集进行评估和比较SOC及其不确定性模型的空间预测。为此目的,我们应用了最常见的措施(即均值误差和均方误差),此外,精度图和G统计。根据我们的结果,QRF和SGS产生了最佳的不确定性模型。英国和RFK-2高估了不确定性,而RFK-1根据精度图和G统计产生了最糟糕的不确定性量化。我们可以得出一般的结论,即需要验证不确定性模型。此外,应对在不确定性建模中的假设中支付很大的关注。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号